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Laplace Inversion of Low-Resolution NMR Relaxometry Data Using Sparse Representation Methods

机译:使用稀疏表示法的低分辨率NMR弛豫数据的Laplace反演

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摘要

Low-resolution nuclear magnetic resonance (LR-NMR) relaxometry is a powerful tool that can be harnessed for characterizing constituents in complex materials. Conversion of the relaxation signal into a continuous distribution of relaxation components is an ill-posed inverse Laplace transform problem. The most common numerical method implemented today for dealing with this kind of problem is based on L2-norm regularization. However, sparse representation methods via L1 regularization and convex optimization are a relatively new approach for effective analysis and processing of digital images and signals. In this article, a numerical optimization method for analyzing LR-NMR data by including non-negativity constraints and L1 regularization and by applying a convex optimization solver PDCO, a primal-dual interior method for convex objectives, that allows general linear constraints to be treated as linear operators is presented. The integrated approach includes validation of analyses by simulations, testing repeatability of experiments, and validation of the model and its statistical assumptions. The proposed method provides better resolved and more accurate solutions when compared with those suggested by existing tools. © 2013 Wiley Periodicals, Inc. Concepts Magn Reson Part A 42A: 72–88, 2013.
机译:低分辨率核磁共振(LR-NMR)弛豫法是一种功能强大的工具,可用于表征复杂材料中的成分。将弛豫信号转换为弛豫分量的连续分布是一个不适定的拉普拉斯逆变换问题。如今,为处理此类问题而采用的最常见的数值方法是基于L2-范数正则化。但是,通过L1正则化和凸优化的稀疏表示方法是有效分析和处理数字图像和信号的一种相对较新的方法。在本文中,通过包括非负约束和L1正则化以及通过应用凸优化求解器PDCO(一种用于凸物镜的原始对偶内部方法)来分析LR-NMR数据的数值优化方法,可以处理一般的线性约束作为线性算子被提出。集成方法包括通过仿真验证分析,测试实验的可重复性,以及验证模型及其统计假设。与现有工具建议的方法相比,该方法可提供更好的解决方案和更准确的解决方案。 ©2013 Wiley Periodicals,Inc.概念Magn Reson A部分42A:72–88,2013年。

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